DocumentCode :
3748081
Title :
Large-scale neural networks implemented with non-volatile memory as the synaptic weight element: Comparative performance analysis (accuracy, speed, and power)
Author :
G. W. Burr;P. Narayanan;R. M. Shelby;S. Sidler;I. Boybat;C. di Nolfo;Y. Leblebici
Author_Institution :
IBM Research-Almaden, 650 Harry Road, San Jose, CA 95120
fYear :
2015
Abstract :
We review our work towards achieving competitive performance (classification accuracies) for on-chip machine learning (ML) of large-scale artificial neural networks (ANN) using Non-Volatile Memory (NVM)-based synapses, despite the inherent random and deterministic imperfections of such devices. We then show that such systems could potentially offer faster (up to 25×) and lower-power (from 120-2850×) ML training than GPU-based hardware.
Keywords :
"Training","Nonvolatile memory","Artificial neural networks","System-on-chip","Phase change materials","Graphics processing units","Neurons"
Publisher :
ieee
Conference_Titel :
Electron Devices Meeting (IEDM), 2015 IEEE International
Electronic_ISBN :
2156-017X
Type :
conf
DOI :
10.1109/IEDM.2015.7409625
Filename :
7409625
Link To Document :
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